Fall 2025 Applied Analytics PS5560 section 002

APPLIED GENERATIVE AI

Call Number 14220
Day & Time
Location
M 6:10pm-8:00pm
To be announced
Points 3
Grading Mode Standard
Approvals Required None
Type LECTURE
Method of Instruction In-Person
Course Description

This course offers a comprehensive introduction to a branch of machine learning called generative modeling, focusing on the underlying concepts, theoretical techniques, and practical applications. The defining property of Generative AI models is their ability to generate new data similar to a given dataset. In recent years, Generative AI has seen rapid advancement, revolutionizing various industries by enabling machines to create realistic and novel content, ranging from images, videos, and music to text and complex simulations.

Students will learn to use, fine-tune, and programmatically interface with high-level APIs and open-source foundational models, allowing them to leverage state-of-the-art tools in Generative AI. Additionally, the course delves into the theory and practice of low-level implementations, empowering students to train their own models on their own data and understand these models from first principles. The course covers various types of generative models, including Variational Autoencoders (VAEs), Generative Adversarial Networks (GANs), and Transformers with their applications to text, image, audio, and video generation.

By combining these approaches, this course provides a robust foundation in both the practical application and deep theoretical knowledge required to develop innovative AI solutions.

Web Site Vergil
Department Applied Analytics
Enrollment 44 students (45 max) as of 9:05AM Friday, April 25, 2025
Subject Applied Analytics
Number PS5560
Section 002
Division School of Professional Studies
Open To Professional Studies
Note ON-CAMPUS. APAN STUDENTS ONLY. PRE-REQS: ADVISOR APPROVAL
Section key 20253APAN5560K002